Combining data reuse exploitation with data-level parallelization for FPGA targeted hardware compilation: A geometric programming framework

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Titel: Combining data reuse exploitation with data-level parallelization for FPGA targeted hardware compilation: A geometric programming framework
Autoren: Qiang Liu, George A. Constantinides, Konstantinos Masselos, Peter Y. K. Cheung
Weitere Verfasser: The Pennsylvania State University CiteSeerX Archives
Quelle: http://cas.ee.ic.ac.uk/people/gac1/pubs/QiangFPL08.pdf.
Publikationsjahr: 2008
Bestand: CiteSeerX
Beschreibung: A geometric programming framework is proposed in this paper to automate exploration of the design space consisting of data reuse (buffering) exploitation and loop-level parallelization, in the context of FPGA-targeted hardware compilation. We expose the dependence between data reuse and data-level parallelization and explore both problems under the on-chip memory constraint for performance-optimal designs within a single optimization step. Results from applying this framework to several real benchmarks demonstrate that given different constraints on on-chip memory utilization, the corresponding performance-optimal designs are automatically determined by the framework, and performance improvements up to 4.7 times have been achieved compared with the method that first explores data reuse and then performs parallelization. 1.
Publikationsart: text
Dateibeschreibung: application/pdf
Sprache: English
Relation: http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.385.9818; http://cas.ee.ic.ac.uk/people/gac1/pubs/QiangFPL08.pdf
Verfügbarkeit: http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.385.9818
http://cas.ee.ic.ac.uk/people/gac1/pubs/QiangFPL08.pdf
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Dokumentencode: edsbas.26329790
Datenbank: BASE